Multi agent knowledge discovery

  1. Gaya, María C. 1
  2. Giráldez, Ignacio 1
  1. 1 Universidad Europea de Madrid
    info

    Universidad Europea de Madrid

    Madrid, España

    ROR https://ror.org/04dp46240

Livre:
Proceedings of the IADIS International Conference WWW/INTERNET 2004: Madrid, Spain, October 6-9, 2004
  1. Isaías, Pedro (coord.)
  2. Karmakar, Nitya (coord.)

Éditorial: IADIS (International Association for Development of the Information Society)

ISBN: 972-99353-0-0

Année de publication: 2004

Titre du volume: Short Papers-Posters

Volumen: 2

Pages: 1085-1088

Congreso: International Conference on WWW/Internet (3. 2004. Madrid)

Type: Communication dans un congrès

Résumé

A Multi Agent Decision System (MADES) is a Multi Agent System built for decision making where a single decision is output by the system as a group, although internally many decisions may be made locally by the component agents. The use of the IAO (Intelligent Agents Organization) model for MADES has produced accuracy results that improve the results obtained by monolithic systems. But the other parameter used in the KDD quality measure, the explanatory power, has not been improved yet. The improvement of the explanatory power would mean that the theory synthesized by the MADES in the KDD task is greater than the explanatory power of the theories that might be synthesized using the knowledge obtained locally from a single data source. The first step needed to achieve this goal is an algorithm for synthesizing a single global theory from knowledge discovered locally by the component agents of a MADES mining distributed data sources.